Decision making in engineering design problems is challenging because they have multiple and conflicting criteria and complex correlation between design parameters. This study proposes a decision-making support methodology named design mode analysis, which consists of data clustering and principal component analysis (PCA). A design mode is indicated by the eigenvector obtained by PCA and reveals the dominant design parameters in a given dataset. The proposed method is a general framework to obtain the design modes from high-dimensional and large datasets. The effectiveness of the proposed method is verified on the conceptual design problem of the hybrid rocket engine.
CITATION STYLE
Hiwa, S., Hiroyasu, T., & Miki, M. (2014). Design mode analysis of pareto solution set for decision-making support. Journal of Applied Mathematics, 2014. https://doi.org/10.1155/2014/520209
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